Non-Intrusive Load Monitoring for Energy Consumption Disaggregation

P. R. Aravind, T. Sarath
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引用次数: 1

Abstract

The smart grid offers a venue for reducing the disparity in demand and generation by demand response initiatives. The efficacy of demand response algorithms relies on identifying the active non-essential loads at consumer premises during peak hours. Hence, separating the electricity usage of a household into its individual appliance consumption is essential for facilitating demand response. Non-intrusive load monitoring (NILM) is the widely adopted methodology for the disaggregation of power consumption. This would consequently help the consumers to manage their energy usage. This paper has implemented and compared two deep learning architectures, CNN and Bi-GRU network for energy consumption disaggregation. Standard UKDALE dataset is used for the training and testing of these architectures. The complex nature of the Bi-GRU network identified appliances with sporadic activity nature whereas CNN performed better in appliances that exhibit periodicity.
面向能耗分解的非侵入式负荷监测
智能电网提供了一个通过需求响应举措来减少需求和发电差距的场所。需求响应算法的有效性依赖于识别高峰时段消费者场所的活跃非必要负荷。因此,将一个家庭的用电量划分为个别电器的消耗量,对促进需求反应至关重要。非侵入式负荷监测(NILM)是一种被广泛采用的电力消耗分解方法。这将有助于消费者管理他们的能源使用。本文实现并比较了CNN和Bi-GRU两种用于能耗分解的深度学习架构。标准UKDALE数据集用于这些体系结构的训练和测试。Bi-GRU网络的复杂性识别出具有零星活动性质的设备,而CNN在表现出周期性的设备上表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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